Buoio Eleonora, Colombo Valentina, Ighina Elena, Tangorra Francesco
Department of Veterinary Medicine and Animal Science, University of Milan, Via dell'Università 6, 26900 Lodi, Italy.
Federchimica AISA, Via G. da Procida, 11, 20149 Milan, Italy.
Foods. 2024 Oct 16;13(20):3279. doi: 10.3390/foods13203279.
Removing fat from whole milk and adding water to milk to increase its volume are among the most common food fraud practices that alter the characteristics of milk. Usually, deviations from the expected fat content can indicate adulteration. Infrared spectroscopy is a commonly used technique for distinguishing pure milk from adulterated milk, even when it comes from different animal species. More recently, portable spectrometers have enabled in situ analysis with analytical performance comparable to that of benchtop instruments. Partial Least Square (PLS) analysis is the most popular tool for developing calibration models, although the increasing availability of portable near infrared spectroscopy (NIRS) has led to the use of alternative supervised techniques, including support vector machine (SVM). The aim of this study was to develop and implement a method based on the combination of a compact and low-cost Fourier Transform near infrared (FT-NIR) spectrometer and variable cluster-support vector machine (VC-SVM) hybrid model for the rapid classification of milk in accordance with EU Regulation EC No. 1308/2013 without any pre-treatment. The results obtained from the external validation of the VC-SVM hybrid model showed a perfect classification capacity (100% sensitivity, 100% specificity, MCC = 1) for the radial basis function (RBF) kernel when used to classify whole vs. not-whole and skimmed vs. not-skimmed milk samples. A strong classification capacity (94.4% sensitivity, 100% specificity, MCC = 0.95) was also achieved in discriminating semi-skimmed vs. not-semi-skimmed milk samples. This approach provides the dairy industry with a practical, simple and efficient solution to quickly identify skimmed, semi-skimmed and whole milk and detect potential fraud.
从全脂牛奶中去除脂肪并向牛奶中加水以增加其体积,是改变牛奶特性的最常见食品欺诈行为。通常,与预期脂肪含量的偏差可能表明掺假。红外光谱法是一种常用技术,可用于区分纯牛奶和掺假牛奶,即使它们来自不同动物物种。最近,便携式光谱仪已能够进行原位分析,其分析性能与台式仪器相当。偏最小二乘法(PLS)分析是开发校准模型最常用的工具,尽管便携式近红外光谱仪(NIRS)的可用性不断提高,导致人们使用包括支持向量机(SVM)在内的替代监督技术。本研究的目的是开发并实施一种基于紧凑型低成本傅里叶变换近红外(FT-NIR)光谱仪和可变聚类支持向量机(VC-SVM)混合模型的方法,用于根据欧盟第1308/2013号法规对牛奶进行快速分类,且无需任何预处理。VC-SVM混合模型外部验证所得结果表明,当用于对全脂与非全脂以及脱脂与非脱脂牛奶样品进行分类时,径向基函数(RBF)核具有完美的分类能力(灵敏度100%,特异性100%,马修斯相关系数MCC = 1)。在区分半脱脂与非半脱脂牛奶样品时,也实现了较强的分类能力(灵敏度94.4%,特异性100%,MCC = 0.95)。这种方法为乳制品行业提供了一种实用、简单且高效的解决方案,可快速识别脱脂、半脱脂和全脂牛奶,并检测潜在欺诈行为。